Enhancing Lip Reading with Multi-Scale Video and Multi-Encoder
- URL: http://arxiv.org/abs/2404.05466v2
- Date: Tue, 30 Apr 2024 15:51:21 GMT
- Title: Enhancing Lip Reading with Multi-Scale Video and Multi-Encoder
- Authors: He Wang, Pengcheng Guo, Xucheng Wan, Huan Zhou, Lei Xie,
- Abstract summary: lip-reading aims to automatically transcribe spoken content from a speaker's silent lip motion captured in video.
We propose to enhance lip-reading by incorporating multi-scale video data and multi-encoder.
Our proposed approach placed second in the ICME 2024 ChatCLR Challenge Task 2.
- Score: 21.155264134308915
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic lip-reading (ALR) aims to automatically transcribe spoken content from a speaker's silent lip motion captured in video. Current mainstream lip-reading approaches only use a single visual encoder to model input videos of a single scale. In this paper, we propose to enhance lip-reading by incorporating multi-scale video data and multi-encoder. Specifically, we first propose a novel multi-scale lip motion extraction algorithm based on the size of the speaker's face and an Enhanced ResNet3D visual front-end (VFE) to extract lip features at different scales. For the multi-encoder, in addition to the mainstream Transformer and Conformer, we also incorporate the recently proposed Branchformer and E-Branchformer as visual encoders. In the experiments, we explore the influence of different video data scales and encoders on ALR system performance and fuse the texts transcribed by all ALR systems using recognizer output voting error reduction (ROVER). Finally, our proposed approach placed second in the ICME 2024 ChatCLR Challenge Task 2, with a 21.52% reduction in character error rate (CER) compared to the official baseline on the evaluation set.
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